FlashRT: Towards Computationally and Memory Efficient Red-Teaming for Prompt Injection and Knowledge Corruption
Yanting Wang, Chenlong Yin, Ying Chen, Jinyuan Jia
TLDR
FlashRT is a novel framework that significantly improves the computational and memory efficiency of optimization-based red-teaming for long-context LLMs.
Key contributions
- First framework for efficient optimization-based prompt injection and knowledge corruption attacks.
- Achieves 2x-7x speedup in red-teaming runtime for long-context LLMs (e.g., 1 hour to <10 min).
- Reduces GPU memory consumption by 2x-4x (e.g., 264.1 GB to 65.7 GB for 32K tokens).
- Broadly applicable to black-box optimization methods such as TAP and AutoDAN.
Why it matters
Optimization-based red-teaming for long-context LLMs is resource-intensive, hindering security evaluations. FlashRT makes these crucial assessments accessible, enabling systematic evaluation of LLM security and defense strategies at scale. This is vital for safer LLM deployment.
Original Abstract
Long-context large language models (LLMs)-for example, Gemini-3.1-Pro and Qwen-3.5-are widely used to empower many real-world applications, such as retrieval-augmented generation, autonomous agents, and AI assistants. However, security remains a major concern for their widespread deployment, with threats such as prompt injection and knowledge corruption. To quantify the security risks faced by LLMs under these threats, the research community has developed heuristic-based and optimization-based red-teaming methods. Optimization-based methods generally produce stronger attacks than heuristic attacks and thus provide a more rigorous assessment of LLM security risks. However, they are often resource-intensive, requiring significant computation and GPU memory, especially for long context scenarios. The resource-intensive nature poses a major obstacle for the community (especially academic researchers) to systematically evaluate the security risks of long-context LLMs and assess the effectiveness of defense strategies at scale. In this work, we propose FlashRT, the first framework to improve the efficiency (in terms of both computation and memory) for optimization-based prompt injection and knowledge corruption attacks under long-context LLMs. Through extensive evaluations, we find that FlashRT consistently delivers a 2x-7x speedup (e.g., reducing runtime from one hour to less than ten minutes) and a 2x-4x reduction in GPU memory consumption (e.g., reducing from 264.1 GB to 65.7 GB GPU memory for a 32K token context) compared to state-of-the-art baseline nanoGCG. FlashRT can be broadly applied to black-box optimization methods, such as TAP and AutoDAN. We hope FlashRT can serve as a red-teaming tool to enable systematic evaluation of long-context LLM security. The code is available at: https://github.com/Wang-Yanting/FlashRT
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